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Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database

OBJECTIVE: Adult growth hormone deficiency (AGHD) is an underdiagnosed disease associated with increased morbidity and mortality. Identifying people who may benefit from growth hormone (GH) therapy can be challenging, as many AGHD symptoms resemble those of aging. We developed an algorithm to potent...

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Autores principales: Yuen, Kevin C. J., Birkegard, Anna Camilla, Blevins, Lewis S., Clemmons, David R., Hoffman, Andrew R., Kelepouris, Nicky, Kerr, Janice M., Tarp, Jens M., Fleseriu, Maria
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9233577/
https://www.ncbi.nlm.nih.gov/pubmed/35761982
http://dx.doi.org/10.1155/2022/7853786
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author Yuen, Kevin C. J.
Birkegard, Anna Camilla
Blevins, Lewis S.
Clemmons, David R.
Hoffman, Andrew R.
Kelepouris, Nicky
Kerr, Janice M.
Tarp, Jens M.
Fleseriu, Maria
author_facet Yuen, Kevin C. J.
Birkegard, Anna Camilla
Blevins, Lewis S.
Clemmons, David R.
Hoffman, Andrew R.
Kelepouris, Nicky
Kerr, Janice M.
Tarp, Jens M.
Fleseriu, Maria
author_sort Yuen, Kevin C. J.
collection PubMed
description OBJECTIVE: Adult growth hormone deficiency (AGHD) is an underdiagnosed disease associated with increased morbidity and mortality. Identifying people who may benefit from growth hormone (GH) therapy can be challenging, as many AGHD symptoms resemble those of aging. We developed an algorithm to potentially help providers stratify people by their likelihood of having AGHD. DESIGN: The algorithm was developed with, and applied to, data in the anonymized Truven Health MarketScan® claims database. Patients. A total of 135 million adults in the US aged ≥18 years with ≥6 months of data in the Truven database. Measurements. Proportion of people with high, moderate, or low likelihood of having AGHD, and differences in demographic and clinical characteristics among these groups. RESULTS: Overall, 0.5%, 6.0%, and 93.6% of people were categorized into groups with high, moderate, or low likelihood of having AGHD, respectively. The proportions of females were 59.3%, 71.6%, and 50.4%, respectively. People in the high- and moderate-likelihood groups tended to be older than those in the low-likelihood group, with 58.3%, 49.0%, and 37.6% aged >50 years, respectively. Only 2.2% of people in the high-likelihood group received GH therapy as adults. The high-likelihood group had a higher incidence of comorbidities than the low-likelihood group, notably malignant neoplastic disease (standardized difference −0.42), malignant breast tumor (−0.27), hyperlipidemia (−0.26), hypertensive disorder (−0.25), osteoarthritis (−0.23), and heart disease (−0.22). CONCLUSIONS: This algorithm may represent a cost-effective approach to improve AGHD detection rates by identifying appropriate patients for further diagnostic testing and potential GH replacement treatment.
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spelling pubmed-92335772022-06-26 Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database Yuen, Kevin C. J. Birkegard, Anna Camilla Blevins, Lewis S. Clemmons, David R. Hoffman, Andrew R. Kelepouris, Nicky Kerr, Janice M. Tarp, Jens M. Fleseriu, Maria Int J Endocrinol Research Article OBJECTIVE: Adult growth hormone deficiency (AGHD) is an underdiagnosed disease associated with increased morbidity and mortality. Identifying people who may benefit from growth hormone (GH) therapy can be challenging, as many AGHD symptoms resemble those of aging. We developed an algorithm to potentially help providers stratify people by their likelihood of having AGHD. DESIGN: The algorithm was developed with, and applied to, data in the anonymized Truven Health MarketScan® claims database. Patients. A total of 135 million adults in the US aged ≥18 years with ≥6 months of data in the Truven database. Measurements. Proportion of people with high, moderate, or low likelihood of having AGHD, and differences in demographic and clinical characteristics among these groups. RESULTS: Overall, 0.5%, 6.0%, and 93.6% of people were categorized into groups with high, moderate, or low likelihood of having AGHD, respectively. The proportions of females were 59.3%, 71.6%, and 50.4%, respectively. People in the high- and moderate-likelihood groups tended to be older than those in the low-likelihood group, with 58.3%, 49.0%, and 37.6% aged >50 years, respectively. Only 2.2% of people in the high-likelihood group received GH therapy as adults. The high-likelihood group had a higher incidence of comorbidities than the low-likelihood group, notably malignant neoplastic disease (standardized difference −0.42), malignant breast tumor (−0.27), hyperlipidemia (−0.26), hypertensive disorder (−0.25), osteoarthritis (−0.23), and heart disease (−0.22). CONCLUSIONS: This algorithm may represent a cost-effective approach to improve AGHD detection rates by identifying appropriate patients for further diagnostic testing and potential GH replacement treatment. Hindawi 2022-06-18 /pmc/articles/PMC9233577/ /pubmed/35761982 http://dx.doi.org/10.1155/2022/7853786 Text en Copyright © 2022 Kevin C. J. Yuen et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Yuen, Kevin C. J.
Birkegard, Anna Camilla
Blevins, Lewis S.
Clemmons, David R.
Hoffman, Andrew R.
Kelepouris, Nicky
Kerr, Janice M.
Tarp, Jens M.
Fleseriu, Maria
Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title_full Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title_fullStr Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title_full_unstemmed Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title_short Development of a Novel Algorithm to Identify People with High Likelihood of Adult Growth Hormone Deficiency in a US Healthcare Claims Database
title_sort development of a novel algorithm to identify people with high likelihood of adult growth hormone deficiency in a us healthcare claims database
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9233577/
https://www.ncbi.nlm.nih.gov/pubmed/35761982
http://dx.doi.org/10.1155/2022/7853786
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